Brain-Like Approximate Reasoning

A. Przybyszewski
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Abstract

Humans can easily recognize objects as complex as faces even if they have not seen them in such conditions before. We would like to find out computational basis of this ability. As an example of our approach we use the neurophysiological data from the visual system. In the retina and thalamus simple light spots are classified, in V1 - oriented lines and in V4 - simple shapes. The feedforward (FF) pathways by extracting above attributes from the object form hypotheses. The feedback (FB) pathways play different roles - they form predictions. In each area structure related predictions are tested against hypotheses. We formulate a theory in which different visual stimuli are described through their condition attributes. Responses in LGN, V1, and V4 neurons to different stimuli are divided into several ranges and are treated as decision attributes. Applying rough set theory (Pawlak, 1991 -[1]) we have divided our stimuli into equivalent classes in different brain areas. We propose that relationships between decision rules in each area are determined in two ways: by different logic of FF and FB pathways: FF pathways gather a huge number of possible objects attributes together using logical "AND" (drivers), and FB pathways choose the right one mainly by logical "OR" (modulators).
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类脑近似推理
人类可以很容易地识别像面孔这样复杂的物体,即使他们以前没有在这种情况下见过它们。我们想找出这种能力的计算基础。作为我们方法的一个例子,我们使用来自视觉系统的神经生理学数据。在视网膜和丘脑中,简单的光点分为V1方向的线和V4简单的形状。前馈(FF)路径通过从对象中提取上述属性形成假设。反馈(FB)通路扮演着不同的角色——它们形成预测。在每个领域中,与结构相关的预测都会根据假设进行检验。我们制定了一个理论,其中不同的视觉刺激是通过他们的条件属性来描述的。LGN、V1和V4神经元对不同刺激的反应被划分为几个范围,并作为决策属性。运用粗糙集理论(Pawlak, 1991 - b[1]),我们将我们的刺激在不同的大脑区域划分为相等的类别。我们提出每个区域的决策规则之间的关系通过两种方式确定:通过FF路径和FB路径的不同逻辑:FF路径使用逻辑“与”(驱动器)收集大量可能的对象属性,而FB路径主要通过逻辑“或”(调节器)选择正确的对象属性。
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